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Edmon Low Library

Gary Yen

Author of "Evolutionary Deep Neural Architecture Search: Fundamentals, Methods, and Recent Advances"

February 7, 2023

Gary G. Yen received his Ph.D. degree in electrical and computer engineering from the University of Notre Dame in 1992. He is currently a Regents Professor with the School of Electrical and Computer Engineering at Oklahoma State University. His research interests include intelligent control, computational intelligence, conditional health monitoring, and signal processing and their industrial/defense applications. Dr. Yen was an associate editor of the IEEE Control Systems Magazine, IEEE Transactions on Control Systems Technology, Automatica, Mechantronics, IEEE Transactions on Systems, Man and Cybernetics, Part A and Part B, IEEE Transactions on Neural Networks and IEEE Transactions on Evolutionary Computation. He is currently serving as an associate editor for the IEEE Transactions on Artificial Intelligence and IEEE Transactions on Cybernetics. He served as the General Chair for the 2003 IEEE International Symposium on Intelligent Control held in Houston, TX and 2006 IEEE World Congress on Computational Intelligence held in Vancouver, Canada. Dr. Yen served as Vice President for the Technical Activities in 2005-2006 and President in 2010-2011 of the IEEE Computational intelligence Society and is the founding editor-in-chief of the IEEE Computational Intelligence Magazine 2006-2009. In 2011, he received the Andrew P. Sage Best Transactions Paper award from IEEE Systems, Man and Cybernetics Society. In 2014, he received Meritorious Service award from IEEE Computational Intelligence Society. He is a fellow of IEEE, IET and IAPR.

"Evolutionary Deep Neural Architecture Search: Fundamentals, Methods, and Recent Advances" introduces the fundamentals and up-to-date methods of evolutionary deep neural architecture search. The book provides the target readers with sufficient details learning from scratch and inspires the students to develop more effective and efficient EDNAS methods.


Last Updated: 9 February 2023